Wednesday, October 16, 2024

Coroutines in RonDB,

 A while ago C++ standard added a new feature to C++ 20 called coroutines. I thought it was an interesting thing to try out for RonDB and used some time this summer to read more about it. My findings was that C++ coroutines can only be used for special tasks that require no stacks. The problem is that a coroutine cannot save the stack.

My hope was to find that I could have a single thread that could work using fibers where the fiber belongs to one thread and the thread could switch between different fibers. The main goal of fibers would be to improve throughput by doing work instead of blocking the CPU on cache misses. However fibers can also be a tool to allow a scalable server where the process runs in a single thread when the load is low, and scale up to hundreds of threads (if the process has access to that many CPUs) when required. This will provide better power efficiency, better latency at low loads. Also if we ever get VMs that can dynamically scale up and down the number of CPUs we can use fibers to scale up and down the number of threads in this case.

My read up on C++ 20 coroutines was that it could not deliver on this.

However my read up found an intriguingly simple and elegant solution to the problem. See this blog for a description and here is the GitHub tree with the code. So a small header file of around 300 lines solves the problem elegantly for x86_64 both on Macs and on Linux and similarly for ARM64. Thus all the platforms RonDB supports. The header file can also be used on Windows (Windows supports fibers).

I developed a small test program to see the code in action:

#include <iostream>

#include "tiny_fiber.h"


/**

 * A very simple test program checking how fibers and threads interact.

 * The program will printout the following:

hello from fibermain

hello from main

hello from fibermain 2

hello from main 2

 */


tiny_fiber::FiberHandle thread_fiber;

tiny_fiber::FiberHandle fiber;


void fibermain(void* arg) {

  tiny_fiber::FiberHandle fiber =

  *reinterpret_cast<tiny_fiber::FiberHandle*>(arg);

  std::cout<<"hello from fibermain"<<std::endl;

  tiny_fiber::SwitchFiber(fiber, thread_fiber);

  std::cout<<"hello from fibermain 2"<<std::endl;

  tiny_fiber::SwitchFiber(fiber, thread_fiber);

}


int main(int argc, char** argv) {

  const int stack_size = 1024 * 16;

  thread_fiber = tiny_fiber::CreateFiberFromThread();

  fiber = tiny_fiber::CreateFiber(stack_size, fibermain, &fiber);

  tiny_fiber::SwitchFiber(thread_fiber, fiber);

  std::cout<<"hello from main"<<std::endl;

  tiny_fiber::SwitchFiber(thread_fiber, fiber);

  std::cout<<"hello from main 2"<<std::endl;

  return 0;

}

Equipped with this I have the tools I need to develop an experiment and see how fibers works with RonDB. Good news is that I need no learn any complex C++ syntax to do this. It is all low level system programming. I have learnt through long experience that it is not a certain success if you have a theory. A computer is sufficiently complex to not understand the impact of changes that one does. So I am excited to see how this particular new idea works out.

The concept of fibers fits very nicely into the RonDB runtime scheduler and the division of work between threads. It even provides the ability for a thread to be turned into a fiber and moved to another OS thread and it can be returned to its original thread again as well.

Friday, October 04, 2024

Early design choices for RonDB and InnoDB

 I have had many interesting discussions with Zhao Song about RonDB and its internals. Since both Zhao and myself also worked on MySQL/InnoDB features as well, it becomes natural that we sometimes compare the features of RonDB  with the features in InnoDB.

In this blog I will discuss what is the basis for the very different solutions that we have in RonDB compared to what we find in InnoDB. Since this blog is mostly about the early history of RonDB and InnoDB I will use the NDB name which is still the name of the product Oracle develops and that RonDB is a fork of.

The story starts more than 30 years ago in the early 1990s. I was just starting my Ph.D studies of databases. I was working at Ericsson, the world's leading telecom provider. In the late 1980s the telecom industry started using databases in the telecom applications. The first application was the network databases for enterprise companies called SCPs (Service Control Point). These network databases was used when calling a company number to intelligently control who would pick up the phone. These numbers are still in use today, 020 numbers in Sweden and 800 numbers in the US.

Traditionally DBMSs had not been used in the telecom industry due to the real-time requirements that the application had on the DBMS. This started to change in the early 1990s when many managers at Ericsson started to understand how important it was to be on top of this new technology in the telecom networks. Actually Ericsson started 4 projects within 10 years to develop new DBMS engines. The first was DBS, an internal SQL database used in AXE switches, the second was DBN, developed as part of a large research project called AXE-N. The third DBMS developed was NDB Cluster and finally the fourth one was Mnesia. All these DBMSs are still in active use, DBS still in AXE systems, DBN renamed to TelORB and used in a number legacy applications within Ericsson, NDB Cluster is nowadays known as MySQL NDB Cluster and RonDB is fork of this DBMS and finally Mnesia is an open source DBMS for Erlang applications.

At the same time the database industry had introduced the relational database and Oracle had won this category in the early 1990s. However Oracle wasn't anything that could be used in the telecom applications in the 1990s.

My personal start in the database market was to develop a course in DBS (Database Subsystem) a new subsystem in the telecom switch AXE that used a compiler to compile SQL queries to assembly (always primary key lookup queries). Actually I still think it might be the most efficient SQL implementation in the world. A SQL Select query could be translated to as little as 2 assembler instructions!

However my research started more in earnest with a EU research project on 3G mobile networks that I participated in 1992-1995. I worked in the network simulation task where we analysed the requirements on the various network nodes in the telecom network. I focused on the requirements of the network databases in the 3G mobile network. The network database was used to track where the mobile was through location updates, the services of the mobile was also stored in the network database.

So from these requirements through network simulations, it was clear that the network database had to handle multiple queries within a time span of about 10 millisecond. The telecom network would be completely dependent on that these network databases would be available at all times. Downtime meant no phone calls for the mobiles, obviously unacceptable.

There was lots of speculation about the killer application for mobiles, today we know this is the smartphone with all its apps. At this time we speculated on multimedia email, on-demand news and I also looked into genealogy applications.

This meant that I had a pretty good idea about the performance requirements, the latency requirements, the availability requirements and the storage requirements of any future telecom DBMS.

In the database industry at the same time there had been lots of research on how to build recovery algorithms. The most important report was written by C. Mohan at IBM that presented the ARIES algorithm.

Both InnoDB and NDB (yes, it is short for Network DataBase) were invented and developed in the 1990s (Ericsson was really keen on three-letter abbreviations). I don't know all the details about the reasons behind InnoDB, but it developed a fairly straightforward architecture based on the knowledge in the 1990s. Thus it has used many ideas from ARIES and from the development of scalable disk-based B+trees. Essentially providing an open source solution that enterprise databases at the time was built like.

NDB on the other hand tried to solve a new problem. How to write an always available DBMS with very low latency and making extremely efficient use of CPUs to ensure that the performance requirements could be met. Much of the early prototypes of NDB used special hardware (Dolphin SCI) for networking that made it possible already in the 1990s to have response times within less than a millisecond.

The requirements and the research led to the following decisions.

  1. The DBMS must primarily be an in-memory DBMS to meet both performance and latency requirements.
  2. The Always Available means that it must have failover times that are instant for Software failures and at most a few seconds at Hardware failures.
  3. The complexity of the Availability requirements meant that a traditional 2-phase locking was used since it simplified the reasoning in recovery algorithms.
  4. The DBMS must avoid context switches as much as possible. This led to NDB becoming the first database that used an internal asynchronous programming style. This led to both superior performance and latency. NDB never lost a benchmark competition, not even when the rules were set by a competing department! The basis of this asynchronous technology came from the AXE system that used blocks (modules) and signals (messages) as main concept in the programming style.
  5. The most important query in a telecom DBMS is the key lookup for read and write.
  6. The DBMS must have a hash index built for efficient use CPU caches as the main index.
  7. SQL was not a suitable programming API for the network database, it required too much overhead for key lookup queries.

If you read those requirements, you probably understand why NDB Cluster became the first Key-value data store, even 10-15 years before the concept was even introduced. Our sales guy went into a market where database was equivalent to use of SQL, so the marketing was mainly done through showing off significant performance benefits and this continues unto this day, RonDB is still the most performant key-value DBMS in the world.

In ARIES the idea was to use the REDO log to roll forward and then using the UNDO log to roll back to a state where there are only completed transactions left. In addition Compensation Log records was used. The writing of the log had to abide by the WAL (Write Ahead Log) algorithm.

Both REDO and UNDO was page-oriented logs, that could sometimes use logical writes within each page.

This meant extra overhead on logging for updating transactions. It is normal that 100 transactions updating 1 row in a DBMS is much more costly than running 1 transaction with 100 rows updated. Not so in NDB, in NDB the cost is more or less the same for the two, can even be more efficient to split into small transactions in a large cluster.

NDB stored transaction state in memory and thus no dirty state was written to the database memory. Thus only a REDO log was required and this was logical, thus only storing changed columns, no need to store all the columns unless if they were all updated.

NDB used a two-phase commit protocol, we used a combination of linear 2-phase commit protocol (between replicas of a row) and a normal 2-phase commit protocol between operations. To avoid blocking states the transaction state can be rebuilt at node failures to ensure that transaction can be finished quickly even in crash situations.

Thus we are ready to make some comparisons between InnoDB and NDB.

1. InnoDB use a traditional ARIES algorithm with REDO and UNDO log.

   NDB use a logical REDO log.

2. InnoDB was designed as a single node DBMS that uses replication algorithms on top to handle availability.

   NDB is a distributed DBMS that is designed for high availability environments and HA is built into the product, thus replication is part of the architecture.

3. InnoDB is a traditional disk-based DBMS

   NDB is an in-memory DBMS

4. InnoDB failover times depends on the time it takes to roll forward the log after a crash.

   NDB failover time is instant.

5. InnoDB use a traditional B+tree, thus best used for small number of larger queries

   NDB tables always have a distributed hash table as main index for efficient key lookups NDB have shown already 11 years ago the ability to handle 200M queries per second.

6. InnoDB use a traditional OS model with lots of threads interacting through mutexes, condition variables and atomic variables. (The author spent a few years making this architecture scale to 64 CPUs).

   NDB used as a base a single-threaded without context switches to execute a query. It has now scaled this up to a set of single-CPU threads that interact and can scale to hundreds of CPUs.

7. InnoDB was designed with most of the focus on access to disk pages being as efficient as possible.

   NDB was designed with data structures that focused on minimising the number of CPU cache misses. NDB can still execute with 2-4x more instructions per CPU cycle compared to traditonal DBMSs. In the early days the difference was even bigger. All disk writes are sequential in nature and thus very efficient.


Both NDB and InnoDB have developed a lot since its early days in the 1990s and both Zhao and myself have participated in both InnoDB and NDB developments. The main reason for their difference is that they focus on solving quite different problems.

Zhao has spent the last year implementing pushdown aggregates in RonDB meaning that aggregate queries can be evaluated right at the time when we access the data and can also be parallelised. This means that those queries can be 10-20x faster in RonDB than previously in NDB and about 5-10x faster than in MySQL/InnoDB.

RonDB is now focused on the requirements of AI applications. This still means a focus on key loookups, but also specialised aggregate queries and a lot of data changes that flows in and out of the RonDB database. The high availability is still a very important requirement. Nowadays RonDB can also stores large parts of the rows on disk using a traditional disk page cache.

In conclusion InnoDB is a very capable database backend for traditional database applications. It has been able to handle competition from many competing products, both within MySQL and outside.

RonDB based on NDB is also a very capable database backend for real-time applications with high-availability surpassing that accomplished with the Oracle DBMS and a perfect fit for the new era of AI applications. It has been used to develop an LDAP server on top of it, an SQL database, a distributed file system and many HA applications. Thus RonDB is an important tool in your toolbox as developer of the most demanding applications.

But InnoDB and RonDB serve very different customer segments, thus their differences simply comes from serving different customer requirements and this has led to quite different technology choices.

Wednesday, September 11, 2024

Rate limits and Quotas in RonDB

Hopsworks-RonDB Background 

One of the services that Hopsworks provides is a free service to run Hopsworks workloads in a managed cloud. This service has been used by many thousands of individuals and companies wanting to experiment with AI Lakehouse applications of various sorts such as predicting weather in your location and other experimental machine learning applications.

This Hopsworks service means that thousands of projects can run concurrently on one Hopsworks cluster. A Hopsworks cluster uses RonDB for three different things. It is used as an online feature store. This means that users import data from their data pipelines and some of this is directed to the online feature store and some of it is directed towards the offline feature store. The data in the online feature store is used for machine learning inferencing in real-time applications. This could be services such as personalised search services, credit fraud analysis and many, many other applications.

The offline feature store uses HopsFS, a distributed file system that is built on top of RonDB. It stores the file data in a backend storage system, often using storage systems such as S3, Scality, Google Cloud Storage, Azure Blob Storage or other storage systems. The metadata of the file system is stored in RonDB.

The data in HopsFS can be used by Hudi, Apache Iceberg, DuckDB and other query services for training machine learning models and performing batch inferencing.

Thirdly RonDB is also used to store metadata about the features, job control and many other things that are used to operate Hopsworks.

Having a multi-tenant DBMS with thousands of concurrent projects running in one RonDB cluster is obviously a challenge. RonDB is required to provide response times down to less than a millisecond and tens of milliseconds while fetching a batch of hundreds of rows to serve a single personalised search request.

Tables in RonDB can store the payload data which could be hundreds of features in one table (feature group) either in memory for best latency and performance or it could be stored in a disk column that provides a cheaper storage at a bit higher cost of accessing the data.

To handle these thousands of projects each project has one database in RonDB. In order to handle many tables in RonDB we have added the capability to configure RonDB to support hundreds of thousands of tables concurrently.

The figure below shows how the data server side is implemented by the RonDB data nodes together with the RonDB management server. The HopsFS access RonDB through ClusterJ, the native Java NDB API. The applications can either access RonDB using a set of MySQL servers or through the RonDB REST API Server. The REST API server delivers capabilities for key lookups and batched key lookups in real-time. It also provides in RonDB 24.10 a new endpoint of RonSQL. RonSQL can handle simple SQL queries that retrieve aggregate information from a table in RonDB. The same query in RonSQL is about 20x times faster than sending it through the MySQL Server.

Why Rate Limits and Quotas?

To manage thousands of concurrent users in a real-time DBMS with each using only a fraction of a CPU is indeed a challenge. In RonDB 24.10 which will be released in a few weeks we have added the capability to limit the use of CPUs, memory and disk space per database.

Managing memory and disk space is fairly straightforward. RonDB tracks each and every memory page and disk page used by a specific database. When the database has reached its limit, it will no longer be possible to insert, write and update the data. It will still be possible to delete and read the data.

Managing CPU resources is handled by keeping track of the CPU usage for each database in real-time. As long as the application using the database is within the limits of its CPU rate, the operation works as normal.

If the application tries to use more CPU than it has requested it will soon be discovered. At this point RonDB needs to slow down this project to ensure that all the other projects get a real-time service. The more overload the project tries to create, the more it will be slowed down. If the slow down doesn't work, eventually the project will not be able to complete any queries in RonDB until it has paid back its CPU "debt". Each time interval the database pays the "debt" and if things go as normal without rate limitation this will put the "debt" back to zero every time interval.

When defining the rate limits we measure it in microseconds of CPU time per second per data node. Thus in a 2-node RonDB cluster setting the rate limit to 100.000 means you get access to 0.1 CPUs in each data node. Setting it to 1000 means you get access to 1 millisecond of CPU time per second per data node. Thus 0.001 CPUs in each data node.

Different projects can have very different requirements, one could require 0.001 CPUs and another one could 1.5 CPUs, these databases can easily co-exist in the RonDB cluster and they will both be able to get a reliable real-time service.

An example of how this works was that we ran a Sysbench OLTP RW benchmark and set the rate limit to 100.000 (0.1 CPU per data node), this made it possible to run 330 TPS (thus 6600 SQL queries per second delivering almost 150.000 rows to the application). This TPS was achieved whatever the number of threads was used from 1 thread to 256 thread. Increasing the rate limit 500.000 meant that we got 5x more TPS.

Obviously this service can also be useful for a company with many departments that want to share one Hopsworks cluster as well.

Now this shows how we can operate the actual data servers in RonDB. The data server clients are stateless clients and can thus scale up and down as needs come and go. In addition the clients in Hopsworks can access the data server clients using load balancers. Together with Hopsworks 4.0 that is operated by Kubernetes it means that RonDB 24.10 will be extremely flexible in scaling up and down CPU, memory and disk on the data server side as well as CPU on the client side.



Monday, May 27, 2024

875X improvement from RonDB 21.04.17 to 22.10.4

At Hopsworks we are working on ensuring that the online feature store will be able to perform complex join operations in real-time. This means that queries that could use data from multiple tables can be easily integrated into machine learning applications.

Today most feature stores use key-value stores like Redis and DynamoDB. These systems have no capability to issue complex join queries, if this is required the feature store will have to write complex code to handle this and this is likely to involve multiple roundtrips and thus cause unwanted latency.

Hopsworks feature store uses RonDB as its online feature store. RonDB can handle any SQL operations that MySQL can handle. Actually RonDB has even support for parallelising the join queries and pushing the filtering and joining down to the RonDB data nodes where data resides.

This means that users of the Hopsworks feature store can integrate more features from multiple feature groups in online inferencing requests. This means that things credit fraud detection can be made much more intelligent by taking more features into account in the inferencing requests.

This means that performance of real-time join queries becomes more important in RonDB. To evaluate how RonDB develops in this are I ran a set of tests using TPC-H queries from DBT3 against RonDB 21.04.17 and RonDB 22.10.4 (not released yet). I also ran tests against MySQL 8.0.35 (RonDB 22.10.4 is based on MySQL 8.0.35 with loads of added RonDB features).

The results were interesting, the improvement in Q20 was the highest I have seen in my career. The performance improved from 70 seconds to 80 milliseconds, thus an 875x speedup or 87500% improvement. Q2 had a 360x improvement. So RonDB 22.10.4 is much better equipped for more complex queries compared to RonDB 21.04. MySQL 8.0.35 had similar performance to RonDB 22.10.4 with an average of around 20% slower, this is mostly due to performance improvements in RonDB, not algorithmic changes.

When using complex queries the query optimiser tries to find an optimal plan, sometimes however better plans are available and one can add hints in the SQL query to ensure a better plan is used.

The RonDB team isn't satisfied with this however, we have realised that evaluating aggregation is also very important when the online feature store stores a time window of certain features. This means that RonDB can compute aggregate dynamically and thus provide more accurate predictions.

Early tests of some simple single table queries showed an improvement of 4-5x and we expect we will be able to get to 10-20x improvements in quite a few queries of this sort.